New Consensus-based Algorithms for Quality Assessment in Protein Structure Prediction
نویسندگان
چکیده
Two of the essential tasks in protein tertiary structure prediction are predicting quality and selecting the best quality model from given model structures. Finding solutions to these problems are fundamental to understanding the nature of proteins and advancing in protein research area. In this thesis, we present efficient algorithms that tackle both problems effectively. The algorithms are developed on the well-known consensus-based idea that has been continuously succesful since CASP6. For assessing the quality of structures, we develop several new methods based on the idea of removing redundant structures and outliers. The algorithms aims at finding suitable reference sets in computing the consensus-score in order to improve the existing algorithms. The methods can use any suitable pair-wise similarity measurement between a pair of models such as GDT-TS and Q score. We also develop a very efficient method for computing Q score for large size problem. In our experimental results, the algorithms are applied to CASP8 dataset and have achieved the superior performance over existing state-of-the-art methods including the top1 method in the QA category of CASP8. For the selecting the best model structure, our new methods are effective and perform better than other
منابع مشابه
A Review on Consensus Algorithms in Blockchain
Block chain technology is a decentralized data storage structure based on a chain of data blocks that are related to each other. Block chain saves new blocks in the ledger without trusting intermediaries through a competitive or voting mechanism. Due to the chain structure or the graph between each block with its previous blocks, it is impossible to change blocking data. Block chain architectur...
متن کاملConsensus fold recognition by predicted model quality
Consensus-based protein structure prediction methods have been proved to be successful in recent CASPs (Critical Assessment of Structure Prediction). By combining several weaker individual servers, a meta server tends to generate better predictions than any individual server. In this paper, we present a Support Vector Machines (SVM) regression-based consensus method for protein fold recognition...
متن کاملQAcon: single model quality assessment using protein structural and contact information with machine learning techniques
Motivation Protein model quality assessment (QA) plays a very important role in protein structure prediction. It can be divided into two groups of methods: single model and consensus QA method. The consensus QA methods may fail when there is a large portion of low quality models in the model pool. Results In this paper, we develop a novel single-model quality assessment method QAcon utilizing...
متن کاملNew protein structure model evaluation methods that include a side-chain consensus score for the protein modeling.
Selecting the best quality model from a set of predicted structures is one of the most important aspects of protein structure prediction. We have developed model quality assessment programs that select high quality models which account for both the Calpha backbone and side-chain atom positions. The new methods are based on the consensus method with consideration of the side-chain environment of...
متن کاملProtein model quality assessment prediction by combining fragment comparisons and a consensus C(alpha) contact potential.
In this work, we develop a fully automated method for the quality assessment prediction of protein structural models generated by structure prediction approaches such as fold recognition servers, or ab initio methods. The approach is based on fragment comparisons and a consensus C(alpha) contact potential derived from the set of models to be assessed and was tested on CASP7 server models. The a...
متن کامل